应用气象学报
應用氣象學報
응용기상학보
QUARTERLY JOURNAL OF APPLIED METEOROLOGY
2014年
1期
120-128
,共9页
天气预报%数据仓库%分析型数据%天气系统识别
天氣預報%數據倉庫%分析型數據%天氣繫統識彆
천기예보%수거창고%분석형수거%천기계통식별
weather forecast%data warehouse%weather analytic data%weather system identifying
将原始数据转换为分析型数据,增强用户对海量数据的分析能力,是数据仓库技术最核心、最有价值的思想,也是数据仓库在气象领域应用的基础。该文针对天气预报领域数据空间性、瞬变性、物理性和多尺度性等特点,提出了五元组描述的天气预报分析型数据概念模型;总结了生成分析型数据的固定区域统计、划分区域统计、基本天气系统识别和天气学概念模型识别4种聚集变换,并对其关键技术进行了讨论。提出了基本天气系统自动识别的滤波-划分-测量算法,探讨了针对气象数据特点的模糊空间关系,定义了进行天气学概念模型识别的空间模糊产生式规则,并针对空间数据给出了定位条件等扩展。
將原始數據轉換為分析型數據,增彊用戶對海量數據的分析能力,是數據倉庫技術最覈心、最有價值的思想,也是數據倉庫在氣象領域應用的基礎。該文針對天氣預報領域數據空間性、瞬變性、物理性和多呎度性等特點,提齣瞭五元組描述的天氣預報分析型數據概唸模型;總結瞭生成分析型數據的固定區域統計、劃分區域統計、基本天氣繫統識彆和天氣學概唸模型識彆4種聚集變換,併對其關鍵技術進行瞭討論。提齣瞭基本天氣繫統自動識彆的濾波-劃分-測量算法,探討瞭針對氣象數據特點的模糊空間關繫,定義瞭進行天氣學概唸模型識彆的空間模糊產生式規則,併針對空間數據給齣瞭定位條件等擴展。
장원시수거전환위분석형수거,증강용호대해량수거적분석능력,시수거창고기술최핵심、최유개치적사상,야시수거창고재기상영역응용적기출。해문침대천기예보영역수거공간성、순변성、물이성화다척도성등특점,제출료오원조묘술적천기예보분석형수거개념모형;총결료생성분석형수거적고정구역통계、화분구역통계、기본천기계통식별화천기학개념모형식별4충취집변환,병대기관건기술진행료토론。제출료기본천기계통자동식별적려파-화분-측량산법,탐토료침대기상수거특점적모호공간관계,정의료진행천기학개념모형식별적공간모호산생식규칙,병침대공간수거급출료정위조건등확전。
To solve the problem of “information exploration”in operational weather forecast,building a data warehouse to help forecaster’s analysis is necessary.The key and most valuable idea is to change raw data to analytic data,include extracting useful data,making data clean,and aggregating data to rough granu-larity data.Usually the meteorological data got in operational weather forecast is processed,clean and ca-nonical.So the main process is “aggregation”to concentrate the weather information to fewer data which have clear physical meaning. <br> A conceptual model of weather analytic data is suggested with a pentagon tuple considering the spa-tial,transitional,physical and multi-scale natures of meteorological data.The pentagon tuple refers to ID (identification),SA (spatial attributes),EA (entity attributes),TA (time attributes)and PA (physical attributes),including several detailed attributes set each.Although meteorological data is field data,fore-casters usually use spatial object data to analyze the weather systems.So the main work of changing raw data to analytic data is identifying spatial objects from field data. <br> Four aggregations arithmetics to change raw data to analytic data are suggested:Statistics for fixed re-gion,statistics for given spatial or temporal partitions,identification of basic weather systems and identifi-cation of weather conceptual models.The former two are relatively simple statistics,while the latter two are complex for mutative spatial object and they are discussed in detail. <br> Basic weather systems include region of high/low,center of high/low and trough/ridge in a data field. A filtering-dividing-measuring arithmetic is suggested.Filtered with a Mexican-hat function,the trough/ridge become high/low region and easier to identify,and then the high/low region are divided from the fil-tered field,with some arithmetics adopted to tread with multi-scale problems of meteorological field.At last the divided regions are measured to get area,extreme value,length,width,aspect ratio (width/length),geometry center,extreme data location,points of central line,including all attributes of SA, EA,TA and PA.If the aspect ratio is smaller than a threshold,the region will be identified as a trough or ridge,and the central line is the trough or ridge line. <br> A knowledge base system with spatial fuzzy production rule is suggested for identifying weather con-ceptual models (e.g.,cold front),and the rational process of this rule is described.4 topological rela-tions,several order relations,measure relations and their subjection functions are suggested.The conclu-sion of the rules is expanded to spatial objects with a result-spatial-object.